Post-hoc vs ante-hoc explanations: xAI design guidelines for data scientists

Carl O. Retzlaff,Alessa Angerschmid,Anna Saranti,David Schneeberger, Richard Roettger, Heimo Mueller,Andreas Holzinger

Cognitive Systems Research(2024)

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摘要
The growing field of explainable Artificial Intelligence (xAI) has given rise to a multitude of techniques and methodologies, yet this expansion has created a growing gap between existing xAI approaches and their practical application. This poses a considerable obstacle for data scientists striving to identify the optimal xAI technique for their needs. To address this problem, our study presents a customized decision support framework to aid data scientists in choosing a suitable xAI approach for their use-case. Drawing from a literature survey and insights from interviews with five experienced data scientists, we introduce a decision tree based on the trade-offs inherent in various xAI approaches, guiding the selection between six commonly used xAI tools. Our work critically examines six prevalent ante-hoc and post-hoc xAI methods, assessing their applicability in real-world contexts through expert interviews. The aim is to equip data scientists and policymakers with the capacity to select xAI methods that not only demystify the decision-making process, but also enrich user understanding and interpretation, ultimately advancing the application of xAI in practical settings.
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关键词
Explainable AI,xAI,Post-hoc,Ante-hoc,Explanations,Guideline
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